Standard methods for the meta-analysis of medical tests without a gold standard are limited to dichotomous data. Multivariate probit models are used to analyze correlated binary data, and can be extended to multivariate ordered probit models to model ordinal data. Within the context of an imperfect gold standard, they have previously been used for the analysis of dichotomous and ordinal tests in a single study, and for the meta-analysis of dichotomous tests. In this paper, we developed a hierarchical, latent class multivariate probit model for the simultaneous meta-analysis of ordinal and dichotomous tests without assuming a gold standard. The model can accommodate a hierarchical partial pooling model on the conditional within-study correlations, enabling one to obtain summary estimates of joint test accuracy. Dichotomous tests use probit regression likelihoods and ordinal tests use ordered probit regression likelihoods. We fitted the models using Stan, which uses a state-of-the-art Hamiltonian Monte Carlo algorithm. We applied the models to a dataset in which studies evaluated the accuracy of tests, and test combinations, for deep vein thrombosis. We first demonstrated the issues with dichotomising test accuracy data a priori without a gold standard by fitting models which dichotomised the ordinal test data, and then we applied models which do not dichotomise the data. Furthermore, we fitted and compared a variety of other models, including those which assumed conditional independence and dependence between tests, and those assuming perfect and an imperfect gold standard.
翻译:没有金本位标准的医学测试元分析标准方法仅限于二分位数据。多变量质谱模型用于分析相关的二进制数据,可以推广到多变量定序原样模型以模拟正态数据。在不完善的金本位标准范围内,以前曾用于分析二分位和正态测试,并用于分析二分位测试的元分析。在本文中,我们开发了一种等级、潜潜值级多变量模型,用于同时对正态和异态测试进行元分析,而不用假定一个金本位标准标准标准数据标准标准数据标准标准。我们应用了模型来评估测试的准确性,没有假设金本位标准数据标准测试,没有假设金本位标准数据标准测试。我们用Stan模型来评估了当时的汉密尔顿和蒙特卡洛标准值算法。我们用模型首次评估了测试的准确性模型,没有假设了金本位标准数据,没有假设了金本位标准测试。我们用模型来测试了之前的数据测试。我们用这个模型来评估了其他模型,我们用这个模型来评估了这些模型,并且测试了之前测试了金本位数据。